Easy RIDER: Real-time IDentification for Ecological Research and Monitoring
Lead Research Organisation:
UK CENTRE FOR ECOLOGY & HYDROLOGY
Department Name: Biodiversity (Wallingford)
Abstract
Insects are the little things that run the world (E.O. Wilson).
With increasing recognition of the importance of insects as the dominant component of almost all ecosystems, there are growing concerns that insect biodiversity has declined globally, with serious consequences for the ecosystem services on which we all depend. Major gaps in knowledge limit progress in understanding the magnitude and direction of change, and hamper the design of solutions. Information about insects trends is highly fragmented, and time-series data is restricted and unrepresentative, both between different groups of insects (e.g. lepidoptera vs beetles vs flies) and between different regions. Critically, we lack primary data from the most biodiverse parts of the world. For example, insects help sustain tropical ecosystems that play a major role in regulating the global climate system and the hydrological cycle that delivers drinking water to millions of people. To date, progress in insect monitoring has been hampered by many technical challenges. Insects are estimated to comprise around 80% of all described species, making it impossible to sample their populations in a consistent way across regions and ecosystems. Automated sensors, deep learning and computer vision offer the best practical and cost-effective solution for more standardised monitoring of insects across the globe. Inter-disciplinary research teams are needed to meet this challenge.
Our project is timely to help UK researchers to develop new international partnerships and networks to underpin the development of long-term and sustainable collaborations for this exciting, yet nascent, research field that spans engineering, computing and biology. There is a pressing need for new research networks and partnerships to maximize potential to revolutionise the scope and capacity for insect monitoring worldwide. We will open up this research field through four main activities:
(a) interactive, online and face-to-face engagement between academic and practitioner stakeholders, including key policy-makers, via online webinars and at focused knowledge exchange and grant-writing workshops in Canada and Europe;
(b) a knowledge exchange mission between the UK and North America, to share practical experience of building and deploying sensors, develop deep learning and computer vision for insects, and to build data analysis pipelines to support research applications;
(c) a proof-of-concept field trial spanning the UK, Denmark, The Netherlands, Canada, USA and Panama. Testing automated sensors against traditional approaches in a range of situation;
(d) dissemination of shared learning throughout this project and wider initiatives, building a new community of practice with a shared vision for automated insect monitoring technology to meet its worldwide transformational potential.
Together, these activities will make a significant contribution to the broader, long-term goal of delivering the urgent need for a practical solution to monitor insects anywhere in the world, to ultimately support a more comprehensive assessment of the patterns and consequences of insect declines, and impact of interventions. By building international partnerships and research networks we will develop sustainable collaborations to address how to quantify the complexities of insect dynamics and trends in response to multiple drivers, and evaluate the ecological and human-linked causes and consequences of the changes.
Crucially, this project is a vital stepping-stone to help identify solutions for addressing the global biodiversity crisis as well as research to understand the biological impacts of climate change and to design solutions for sustainable agriculture. Effective insect monitoring underpins the evaluation of future socio-economic, land-use and climate mitigation policies.
With increasing recognition of the importance of insects as the dominant component of almost all ecosystems, there are growing concerns that insect biodiversity has declined globally, with serious consequences for the ecosystem services on which we all depend. Major gaps in knowledge limit progress in understanding the magnitude and direction of change, and hamper the design of solutions. Information about insects trends is highly fragmented, and time-series data is restricted and unrepresentative, both between different groups of insects (e.g. lepidoptera vs beetles vs flies) and between different regions. Critically, we lack primary data from the most biodiverse parts of the world. For example, insects help sustain tropical ecosystems that play a major role in regulating the global climate system and the hydrological cycle that delivers drinking water to millions of people. To date, progress in insect monitoring has been hampered by many technical challenges. Insects are estimated to comprise around 80% of all described species, making it impossible to sample their populations in a consistent way across regions and ecosystems. Automated sensors, deep learning and computer vision offer the best practical and cost-effective solution for more standardised monitoring of insects across the globe. Inter-disciplinary research teams are needed to meet this challenge.
Our project is timely to help UK researchers to develop new international partnerships and networks to underpin the development of long-term and sustainable collaborations for this exciting, yet nascent, research field that spans engineering, computing and biology. There is a pressing need for new research networks and partnerships to maximize potential to revolutionise the scope and capacity for insect monitoring worldwide. We will open up this research field through four main activities:
(a) interactive, online and face-to-face engagement between academic and practitioner stakeholders, including key policy-makers, via online webinars and at focused knowledge exchange and grant-writing workshops in Canada and Europe;
(b) a knowledge exchange mission between the UK and North America, to share practical experience of building and deploying sensors, develop deep learning and computer vision for insects, and to build data analysis pipelines to support research applications;
(c) a proof-of-concept field trial spanning the UK, Denmark, The Netherlands, Canada, USA and Panama. Testing automated sensors against traditional approaches in a range of situation;
(d) dissemination of shared learning throughout this project and wider initiatives, building a new community of practice with a shared vision for automated insect monitoring technology to meet its worldwide transformational potential.
Together, these activities will make a significant contribution to the broader, long-term goal of delivering the urgent need for a practical solution to monitor insects anywhere in the world, to ultimately support a more comprehensive assessment of the patterns and consequences of insect declines, and impact of interventions. By building international partnerships and research networks we will develop sustainable collaborations to address how to quantify the complexities of insect dynamics and trends in response to multiple drivers, and evaluate the ecological and human-linked causes and consequences of the changes.
Crucially, this project is a vital stepping-stone to help identify solutions for addressing the global biodiversity crisis as well as research to understand the biological impacts of climate change and to design solutions for sustainable agriculture. Effective insect monitoring underpins the evaluation of future socio-economic, land-use and climate mitigation policies.
People |
ORCID iD |
David Roy (Principal Investigator) | |
Tom August (Co-Investigator) |
Description | This award has build a research network to develop automated systems for monitoring insects. The partnership includes collaborators from the UK, Denmark, the Netherlands, Canada, USA and Panama. The inter-disciplinary team includes engineers, computer scientists, statisticians and ecologists. Key outcomes from the project are new funding proposals to deploy automated systems. |
Exploitation Route | The project team have produced a research paper due for publication in 2024, titled: "Towards a standardised framework for AI-assisted, image-based monitoring of nocturnal insects". This provides an overview of this field, enable researchers to use this new technology for biodiversity monitoring. |
Sectors | Digital/Communication/Information Technologies (including Software) Environment |
Description | AMBER (AI-assisted Monitoring of Biodiversity using Edge-processing and Remote sensors) |
Amount | £1,000,000 (GBP) |
Organisation | Alan Turing Institute |
Sector | Academic/University |
Country | United Kingdom |
Start | 03/2023 |
End | 03/2025 |
Title | Audible and ultrasound recordings to survey birds and bats on Barro Colorado Island and in the Gamboa forest region, Panama, January 2023 |
Description | Audible and ultrasound recordings in Panama for the purpose of monitoring bird and bat calls. The recordings were taken across 4 sites in Barro Colorado Island and the Gamboa forest region around sunrise and sunset hours between the 21st and the 26th of January 2023. Audible recordings were made using SM4 song meter, whilst ultrasound was recorded using a SM4BAT song meter. The Parties involved in data collection are listed in the author section. No data are missing. |
Type Of Material | Database/Collection of data |
Year Produced | 2023 |
Provided To Others? | Yes |
URL | https://catalogue.ceh.ac.uk/id/eeb7c6dc-2ad8-4375-ad86-523a6e570170 |
Title | Images of nocturnal insects collected in a trial of three automated camera systems on Barro Colorado Island, Panama, January 2023 |
Description | Dataset contains images recorded during a trial of Automated Monitoring of Insects (AMI), Automoth and Diopsis camera systems. The images were taken at five sites in Barro Colorado Island, Panama, during night-time hours from the 23rd to the 26th of January 2023. The parties involved in data collection are listed in the author section. |
Type Of Material | Database/Collection of data |
Year Produced | 2023 |
Provided To Others? | Yes |
URL | https://catalogue.ceh.ac.uk/id/b088d4bd-4abb-46d4-bc90-f4e58c65f324 |
Description | Webinar on assessing automated insect monitoring |
Form Of Engagement Activity | Participation in an activity, workshop or similar |
Part Of Official Scheme? | No |
Geographic Reach | International |
Primary Audience | Professional Practitioners |
Results and Impact | This workshop is part of a series of online meetings to share experiences around the globe using automated technology (Cameras + AI) to monitor moths and other nocturnal insects. In this meeting, we focused on assessing the effectiveness of these systems in real-world settings, and comparing results with traditional monitoring methods. More than 20 researchers from across the globe attended the online session where we heard from three speakers who presented preliminary results from three different projects that have deployed automated systems. We followed the talks with a discussion session exploring how we address challenges raised in the talks, including how automated methods can best complement existing monitoring approaches. |
Year(s) Of Engagement Activity | 2021 |
URL | https://www.wildlabs.net/event/workshop-ii-assessing-automated-insect-monitoring |
Description | Webinar on automated insect camera traps |
Form Of Engagement Activity | Participation in an activity, workshop or similar |
Part Of Official Scheme? | No |
Geographic Reach | International |
Primary Audience | Professional Practitioners |
Results and Impact | In this particular meeting, we focus on hardware design of such camera traps for moth monitoring. We had 2 hours, and in this time, we introduced a range of projects developing hardware for automated moth monitoring and discuss the common challenges we face. More than 20 researchers from across the globe, met at an online workshop to present their projects and plan future webinars on topics to build a global network. Individuals offered to take the lead in planning and hosting future webinars as part of this seedcorn project. |
Year(s) Of Engagement Activity | 2022 |
URL | https://www.wildlabs.net/event/workshop-i-automated-moth-monitoring-deployments |
Description | Webinar on designing machine learning tools to process camera trap data automatically |
Form Of Engagement Activity | Participation in an activity, workshop or similar |
Part Of Official Scheme? | No |
Geographic Reach | International |
Primary Audience | Professional Practitioners |
Results and Impact | In this 1.5 hour-session we heard from three teams who will be presenting on their work in designing machine learning tools to process camera trap data automatically, both for moth-monitoring specifically and more broadly in this space. More than 50 researchers from across the globe attended the webinar and participated in the following discussion focused on opportunities to leverage machine learning to enhance the monitoring projects discussed in previous sessions, and challenges involved in integrating machine learning tools across diverse hardware system. |
Year(s) Of Engagement Activity | 2022 |
URL | https://www.wildlabs.net/event/workshop-iii-designing-machine-learning-tools-process-camera-trap-dat... |
Description | Webinar on pollinator monitoring |
Form Of Engagement Activity | Participation in an activity, workshop or similar |
Part Of Official Scheme? | No |
Geographic Reach | International |
Primary Audience | Professional Practitioners |
Results and Impact | this was the fourth workshop on pollinator monitoring as part of the Easy-RIDER project. In this 2 hour-session three different teams presented their work in designing automated monitoring tools for flower-visiting insects, and different ways for creating datasets for training machine learning algorithms for insect identification and how these new technologies can be integrated in traditional monitoring schemes. As previous webinar, more than 50 researchers from around the globe participated in the following discussion session focused on opportunities to leverage machine learning to enhance the monitoring projects discussed in previous sessions, challenges involved in integrating machine learning tools and ways to increase interdisciplinary collaboration. |
Year(s) Of Engagement Activity | 2022 |
URL | https://www.wildlabs.net/event/workshop-iv-pollinator-monitoring |